Improvement of genetic programming symbolic regression and its application in heat exchangers

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Abstract

In the present study, symbolic regression is used to analyze the experimental data to find a more accurate correlation for heat transfer rate of heat exchangers. In order to improve the performance of genetic programming toolbox GPLAB of MATLAB environment, four new function modules are added into GPLAB, including: structure simplification module; constants optimization module; expansion rate reduction module with "self-swap" genetic operator; small term search intensity enhancement module with "intro-new" genetic operator. The modified symbolic regression is then used in the experimental data reduction process for shell-and-tube heat exchanger with continuous helical baffles. The correlations obtained have higher predictive accuracy and are less sensitive to the disturbance variation of the arguments.

Original languageEnglish
Pages (from-to)1415-1418
Number of pages4
JournalKung Cheng Je Wu Li Hsueh Pao/Journal of Engineering Thermophysics
Volume33
Issue number8
StatePublished - Aug 2012

Keywords

  • Correlations
  • Genetic programming
  • Heat exchanger
  • Symbolic regression

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